Institute of Electronics, Lodz University of Technology, Łódź, Poland.
Institute of Electronics, Lodz University of Technology, Łódź, Poland.
Clin Dermatol. 2024 May-Jun;42(3):280-295. doi: 10.1016/j.clindermatol.2023.12.022. Epub 2024 Jan 3.
The incidence of melanoma is increasing rapidly. This cancer has a good prognosis if detected early. For this reason, various systems of skin lesion image analysis, which support imaging diagnostics of this neoplasm, are developing very dynamically. To detect and recognize neoplastic lesions, such systems use various artificial intelligence (AI) algorithms. This area of computer science applications has recently undergone dynamic development, abounding in several solutions that are effective tools supporting diagnosticians in many medical specialties. In this contribution, a number of applications of different classes of AI algorithms for the detection of this skin melanoma are presented and evaluated. Both classic systems based on the analysis of dermatoscopic images as well as total body systems, enabling the analysis of the patient's whole body to detect moles and pathologic changes, are discussed. These increasingly popular applications that allow the analysis of lesion images using smartphones are also described. The quantitative evaluation of the discussed systems with particular emphasis on the method of validation of the implemented algorithms is presented. The advantages and limitations of AI in the analysis of lesion images are also discussed, and problems requiring a solution for more effective use of AI in dermatology are identified.
黑色素瘤的发病率正在迅速上升。如果早期发现,这种癌症的预后良好。出于这个原因,各种皮肤病变图像分析系统正在非常活跃地发展,这些系统支持对这种肿瘤的成像诊断。为了检测和识别肿瘤性病变,这些系统使用各种人工智能(AI)算法。计算机科学应用的这一领域最近经历了快速发展,涌现出了许多有效的解决方案,这些解决方案是支持许多医学专业诊断医生的有效工具。在本研究中,介绍并评估了用于检测这种皮肤黑色素瘤的不同类别的 AI 算法的应用。讨论了基于皮肤镜图像分析的经典系统以及全身系统,这些系统能够分析患者的整个身体,以检测痣和病理变化。还描述了越来越受欢迎的应用程序,这些应用程序允许使用智能手机分析病变图像。特别强调了所实现算法的验证方法,对所讨论的系统进行了定量评估。还讨论了 AI 在分析病变图像方面的优势和局限性,并确定了需要解决的问题,以便更有效地在皮肤病学中使用 AI。